Learning a Representation of a Believable Virtual Character's Environment with an Imitation Algorithm

12/29/2010
by   Fabien Tencé, et al.
0

In video games, virtual characters' decision systems often use a simplified representation of the world. To increase both their autonomy and believability we want those characters to be able to learn this representation from human players. We propose to use a model called growing neural gas to learn by imitation the topology of the environment. The implementation of the model, the modifications and the parameters we used are detailed. Then, the quality of the learned representations and their evolution during the learning are studied using different measures. Improvements for the growing neural gas to give more information to the character's model are given in the conclusion.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset